fdi spillovers and acap girma and gorg 2005 (eng)
TRANSCRIPT
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Foreign direct investment,spillovers and absorptive capacity:evidence from quantile regressions
Sourafel Girma(University of Leicester)
Holger Grg(University of Nottingham and DIW Berlin)
Discussion PaperSeries 1: Economic StudiesNo 13/2005
Discussion Papers represent the authors personal opinions and do not necessarily reflect the views of theDeutsche Bundesbank or its staff.
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ISBN 386558053X
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Abstract:
This paper focuses on the role of absorptive capacity in determining whether or notdomestic firms benefit from productivity spillovers from FDI using establishment leveldata for the UK. We allow for different effects of FDI on establishments located atdifferent quantiles of the productivity distribution by using conditional quantileregression. Overall, while there is some heterogeneity in results across sectors andquantiles, our findings clearly suggest that absorptive capacity matters for productivityspillover benefits. We find evidence for a u-shaped relationship between productivitygrowth and FDI interacted with absorptive capacity. We also analyse in some detail theimpact of changes in absorptive capacity on establishments ability to benefit fromspillovers.
Keywords: foreign direct investment, absorptive capacity, productivityspillovers, quantile regressions
JEL-Classification: F21, F23
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Non Technical Summary
Many governments around the globe actively attempt to attract multinational companies(MNCs) to locate in their country using substantial fiscal and financial incentives. One
of the main rationales for these policy interventions is the belief that domestic firms can
benefit from the presence of foreign multinationals through productivity spillovers.
Hence, domestic firms may improve their productivity if there are positive externalities
emanating from multinationals.
Recent surveys of the literature conclude that there does not appear to be much evidence
that there are aggregate benefits which accrue to all types of domestic firms equally.Rather, it appears that conditions in the host country seem crucial for whether or not
there are positive spillovers. In particular, the absorptive capacity of domestic firms,
that is their ability to utilise spillovers from multinationals to improve their productivity,
has been found to be an important determinant for whether or not domestic firms benefit
from foreign direct investment (FDI).
The aim of this paper is to focus in detail on the role of establishments absorptive
capacity in determining the magnitude of possible benefits from FDI. To this end wecalculate absorptive capacity as the gap in total factor productivity (TFP) between the
domestic establishment and the industry leader and allow for a non-linear relationship
between FDI and absorptive capacity. We then investigate how changes in absorptive
capacity may determine the benefits to domestic firms from productivity spillovers,
holding FDI constant. This is an important issue from a policy point of view, as policy
may be more easily targeted at improving levels of absorptive capacity than at fine
tuning the level or growth inward FDI. A further contribution of our paper is that weallow for different effects of FDI on TFP at different quantiles of the productivity
distribution. This allows us to take better account of the large and persistent
heterogeneity in productivity dynamics across establishments. We present a detailed
analysis of the role of absorptive capacity for FDI spillovers using data for the UK.
Our results indicate that absorptive capacity is important in determining whether or not
domestic establishments benefit from FDI spillovers. We find a u-shape relationship
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between productivity growth and spillovers from FDI interacted with absorptive
capacity. We determine the exact turning points for the quadratic relationship and
evaluate the marginal effects of changes in absorptive capacity on productivity holdingFDI constant.
Nicht technische Zusammenfassung
Viele Regierungen in der ganzen Welt versuchen aktiv, multinationale Unternehmen
(MNU) ins Land zu holen, und bieten dabei erhebliche steuerliche und finanzielle
Anreize. Einer der Hauptgrnde fr diese politischen Eingriffe ist die berzeugung,
dass die inlndischen Firmen durch Spill-over-Effekte bei der Produktivitt von der
Prsenz multinationaler auslndischer Unternehmen profitieren knnen. Wenn zum
Beispiel positive externe Effekte von den multinationalen Unternehmen ausgehen,
knnten die inlndischen Firmen ihre Produktivitt steigern.
Nach den jngsten Verffentlichungen zu urteilen, scheint nicht viel darauf
hinzudeuten, dass es einen gesamtwirtschaftlichen Nutzen gibt, der allen Arten von
inlndischen Unternehmen gleichermaen zugute kommt. Es ist wohl vielmehr so, dass
die Bedingungen im Gastgeberland einen entscheidenden Einfluss darauf haben, ob es
positive Spill-over-Effekte gibt oder nicht. Insbesondere die Absorptionskapazitt der
inlndischen Firmen, d. h. ihre Fhigkeit, von multinationalen Unternehmen ausgehende
Spill-over-Effekte zur Steigerung ihrer Produktivitt zu nutzen, erwies sich als
wichtiger Punkt bei der Frage, ob inlndische Firmen von auslndischen
Direktinvestitionen (ADI) profitieren knnen oder nicht.
In diesem Diskussionspapier soll eingehend untersucht werden, inwieweit die
Absorptionskapazitt von Unternehmen das Ausma des aus ADI zu ziehenden Nutzens
beeinflusst. Zu diesem Zweck berechnen wir die Absorptionskapazitt als Differenz der
Faktorproduktivitt (TFP) zwischen der inlndischen Firma und dem
Branchenmarktfhrer und gehen dabei von einer nichtlinearen Beziehung zwischen
den ADI und der Absorptionskapazitt aus. Danach untersuchen wir, wie der Nutzen,
den inlndische Unternehmen aus Spill-over-Effekten auf die Produktivitt ziehen, von
der Absorptionskapazitt beeinflusst wird. Dies ist eine wichtige politische Frage, da
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eine Verbesserung der Absorptionskapazitt leichter angestrebt werden knnte als eine
Feinsteuerung der Hhe oder des Wachstums der zuflieenden Direktinvestitionen.
Auerdem werden in unserem Papier die unterschiedlichen Auswirkungen der ADI aufdie TFP bei einzelnen Quantilen der Produktivittsverteilung untersucht. Dadurch
knnen wir die groe und permanente Heterogenitt der Produktivitts-dynamik
zwischen den Unternehmen besser bercksichtigen. Wir prsentieren eine detaillierte
Analyse der Auswirkungen der Absorptionskapazitt auf die Spill-over-Effekte von
ADI anhand von Daten fr Grobritannien.
Unsere Ergebnisse zeigen, dass die Absorptionskapazitt bei der Frage, ob inlndische
Firmen von Spill-over-Effekten bei ADI profitieren oder nicht, eine wichtige Rollespielt. Wir stellen eine u-frmige Relation zwischen Produktivittswachstum und Spill-
over-Effekten aus ADI in Abhngigkeit von der Absorptionskapazitt fest. Wir
bestimmen die genauen Wendepunkte fr die quadratische Relation und ermitteln die
marginalen Auswirkungen von nderungen der Absorptionskapazitt auf die
Produktivitt bei konstanten ADI.
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Contents
1 Introduction 1
2 The role of absorptive capacity 3
3 Econometric model and estimation technique 5
3.1 Modelling productivity spillovers from FDI 5
3.2 Quantile regression 7
3.3 TFP estimation 8
4 Data 10
5 Empirial results 12
6 Conclusions 18
References 20
Appendix I 22
Appendix II 23
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Lists of Tables and Figures
Table 1 Summary statistics for log TFP 9
Table 2 Number of domestic plants by number of years observed 12
Table 3 Effect of FDI on domestic establishments TFP
Electronics sector (dependent variable: ln TFP)
13
Table 4 Effect of FDI on domestic establishments TFP
Engineering sector(dependent variable: ln TFP)
13
Table 5 Mean ABC for firms within the 90 percent confidence
interval of qth quantile ofTFP14
Table 6 Marginal effect of increase in FDI, evaluated at median
ABC
15
Table 7 Calculation of critical values for ABC 17
Figure 1 Kernel density estimates of log TFP 9
Figure 2 Calculation of marginal effects of change in absorptive
capacity
Panel A: Electronics
Panel B: Engineering
19
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1
Foreign direct investment, spillovers and absorptive capacity:
Evidence from quantile regressions*
1 Introduction
Many governments around the globe actively attempt to attract multinational
companies (MNCs) to locate in their country using substantial fiscal and financial
incentives. For example, the British Government provided an estimated $30,000 and
$50,000 per employee to attract Samsung and Siemens respectively to the North East of
England in the late 1990s (Girma et al., 2001). Across the Atlantic, the government of
Alabama paid the equivalent of $150,000 per employee to Mercedes for locating its newplant in the state in 1994 (Head, 1998). Some countries also provide tax incentives. For
example, Ireland offers a corporate tax rate of 12.5 percent to all manufacturing firms
locating in the country.
One of the main rationales for these policy interventions is the belief that
domestic firms can benefit from the presence of foreign multinationals through
productivity spillovers. Hence, domestic firms may improve their productivity if there
are positive externalities emanating from multinationals, although domestic firms may
be affected adversely if competition with multinationals reduces output for domestic
firms and, thus, leads to reductions in productivity (see Aitken and Harrison, 1999).
Recent surveys of the literature conclude that there does not appear to be much
evidence that there are aggregate benefits which accrue to all types of domestic firms
equally (see Grg and Greenaway, 2004 and Blomstrm and Kokko, 1998). Rather, it
appears that conditions in the host country seem crucial for whether or not there are
positive spillovers. In particular, the absorptive capacity of domestic firms, that is their
ability to utilise spillovers from multinationals to improve their productivity, has been
* Remarks: The authors are grateful to the ONS Business Data Linking Project for providing access tothe ARD database. Thanks are due to David Greenaway, Steve Redding, Beata Smarzynska Javorcik,Eric Strobl, Dieter Urban and participants at the Kiel Workshop on Multinationals and InternationalIntegration, the RES conference in Warwick, a NUPI/TIK workshop in Oslo and a seminar at IIISDublin for helpful comments. Financial support from the European Commission (Grant Nos. HPSE-
CT-1999-00017 and SERD-2002-00077) and the Leverhulme Trust (Grant No. F114/BF) is gratefullyacknowledged.
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2
found to be an important determinant for whether or not domestic firms benefit from
foreign direct investment (FDI).1
The aim of this paper is to focus in detail on the role of establishments absorptive
capacity in determining the magnitude of possible benefits from FDI. To this end we
calculate absorptive capacity as the gap in total factor productivity (TFP) between the
domestic establishment and the industry leader and allow for a non-linear relationship
between FDI and absorptive capacity. We then investigate how changes in absorptive
capacity may determine the benefits to domestic firms from productivity spillovers,
holding FDI constant. This is an important issue from a policy point of view, as policy
may be more easily targeted at improving levels of absorptive capacity (through, for
example, training or R&D programmes) than at fine tuning the level or growth of
inward FDI.
A further contribution of our paper is that we allow for different effects of FDI on
TFP at different quantiles of the productivity distribution. While standard least squares
estimates the mean of the dependent variable conditional on the covariates we use the
quantile regression estimator to estimate the effect of the covariates on different
quantiles of the productivity distribution. This allows us to take better account of the
large and persistent heterogeneity in productivity dynamics across establishments.2
We present a detailed analysis of the role of absorptive capacity for FDI spillovers
using data for the UK.3 Our results indicate that absorptive capacity is important in
determining whether or not domestic establishments benefit from FDI spillovers. We
find a u-shape relationship between productivity growth and spillovers from FDI
interacted with absorptive capacity. We determine the exact turning points for the
quadratic relationship and evaluate the marginal effects of changes in absorptive
capacity on productivity holding FDI constant.
1 Keller (2001) also discusses the role of absorptive capacity for successful technology diffusion.2 To the best of our knowledge, there has been only one previous application of quantile regression in
the literature on productivity spillovers. Dimelis and Louri (2002) apply this technique to analysespillovers from FDI for a sample of Greek manufacturing firms using cross-sectional data. They donot allow for an impact of domestic firms absorptive capacity, however. Also, they only analyse theeffect of FDI on domestic labour productivity while we look at total factor productivity.
3 While much of the literature on productivity spillovers has focused on developing countries, theliterature on developed countries has grown substantially in the very recent past. In particular, there
have been a number of recent studies on the UK (for example, Driffield, 2001, Girma et al., 2001,
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3
The remainder of the paper is structured as follows. Section 2 presents a brief
review of the literature on the role of absorptive capacity for FDI spillovers. Section 3
outlines the econometric methodology and discusses the advantages of using quantile
regression in the context of our paper. Section 4 discusses the dataset and some
summary statistics while Section 5 presents the empirical results. Finally, Section 6
concludes.
2 The role of absorptive capacity
In an early theoretical paper, Findlay (1978) emphasised the importance of
relative backwardness for the speed of adoption of new technologies and spillover
benefits from multinationals. Findlays model suggests that the greater the
technological distance between the (less advanced) host and (advanced) home country,
the greater the available opportunities to exploit in the former and the more rapidly new
technology is adopted. Hence, the potential for positive spillovers is higher the larger
the technology gap between host and home. More recently, however, this view has
changed. For example, Glass and Saggi (1998) also see a role for technological distance
between the host and home country, however, they see the technology gap as indicating
absorptive capacity of host country firms, i.e., their ability to absorb and utilise the
knowledge that spills over from multinationals. The larger the gap, the less likely are
host country firms to have the human capital and technological know-how to benefit
from the technology transferred by the multinationals and, hence, the lower is the
potential for spillover benefits.
There have been a number of empirical studies examining this issue. Kokko
(1994) advances the idea that spillovers depend on the complexity of the technology
transferred by multinationals, and the technology gap (that is, the difference in labour
productivity) between domestic firms and MNCs. Using cross-section industry level
data for Mexico he finds no evidence for spillovers in industries where multinationals
use highly complex technologies (as proxied by either large payments on patents or high
capital intensity). A large technology gapper se does not appear to hinder technology
Girma and Wakelin, 2001, Haskel et al., 2002). None of the studies analyses the role of absorptivecapacity in such detail as done in this paper.
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4
spillovers on average, although industries with large technology gaps and a high foreign
presence experience lower spillovers than other industries.4
Kokko et al. (1996) hypothesise that domestic firms can only benefit if the
technology gap between the multinational and the domestic firm is not too wide so that
domestic firms can absorb the knowledge available from the multinational. Thus
domestic firms using very backward production technology and low skilled workers
may be unable to learn from multinationals. Using a cross-section of firm-level data for
Uruguay, Kokko et al. find evidence for productivity spillovers to domestic firms with
moderate technology gaps, (measured as the difference between the firms labour
productivity and the average labour productivity in foreign firms) but not for firms
which use considerably lower levels of technology.5
Girma et al. (2001) use firm-level panel data to examine productivity spillovers in
UK manufacturing. They find evidence for spillovers to firms with a low difference
between the firms productivity level and the industry frontier productivity level
(termed technology gap). Firms with a technology gap of 10 per cent or less appear
to increase productivity with increasing foreign presence in the industry, while firms
with higher gaps seem to suffer reductions in productivity.
These papers define absorptive capacity as a technology gap defined in terms of
productivity differentials between foreign and domestic firms. This is motivated by the
idea that domestic firms with productivity levels similar to multinationals may also be
more capable of absorbing the transferred technology. Other definitions of absorptive
capacity have been put forward, however. For example, Kinoshita (2001) finds
evidence for positive spillovers from FDI to local firms that are R&D intensive in her
analysis of firm level panel data for the Czech Republic. She interprets firms R&D
intensity as a measure of absorptive capacity.6 Barrios and Strobl (2002) also take R&D
active domestic firms as having absorptive capacity. Furthermore, they argue that
4 Kokko (1994) argues that these industries show many of the characteristics of being enclaves wheremultinationals have little interaction with domestic firms and, hence, there is little scope for spillovers.
5 By contrast, Sjholm (1999) finds that, in cross-sectional data for Indonesian manufacturing firms,productivity spillovers from foreign to domestic firms are larger the larger the technology gap (alsodefined in terms of differences in labour productivity) between those groups of firms and the higher thedegree of competition in the industry.
6
Somewhat related, Grg and Strobl (2003) distinguish positive effects from FDI on domestic plants inhigh vs low tech industries, and find that only plants in the former industries benefit.
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5
exporting firms are more exposed to competition on foreign markets and may, therefore,
be likely to have higher levels of technology, and thus absorptive capacity, than non-
exporters. In their empirical analysis, using firm level panel data for Spain, they find
that, indeed, exporters benefit more from FDI spillovers, but that there is no apparent
absorptive capacity effect for R&D active firms relative to those that are not R&D
active.
3 Econometric model and estimation technique
3.1 Modelling productivity spillovers from FDI
Empirical studies on productivity spillovers commonly regress firm levelproductivity on a number of covariates, including foreign presence in the industry. This
implies the constraint that all firms benefit equally from spillovers, ceteris paribus. In
this paper we allow the spillover effect to vary across plants according to their level of
absorptive capacity (ABC). Our assumption is that plants with higher levels of ABC
(lower technology gaps vis--vis the industry leader) are able to reap greater benefits
from foreign direct investment, as they have the necessary technological ability to
assimilate the knowledge available from foreign multinationals.7
Specifically, to investigate the role of absorptive capacity we estimate the impact
of FDI spillovers on productivity via the following total factor productivity (TFP)
growth equation,
itrtjtitit DFDIABCXTFP +++= )(1 (1)
which forms the basis for our empirical work.8 Here i, j r and t index
establishment, four-digit industries, regions and time periods respectively. Xis a vector
of variables hypothesised to impact on plant level TFP growth trajectories, namely plant
7 We are cautious to point out, however, that TFP is of course only a noisy measure of the technologicallevel of the plant, as there may, for instance, be temporary shocks that affect TFP but do not at thesame time change a plants technological capability. If anything, this should cause estimated spillovereffects to be downward biased.
8
We utilise a TFP growth rather than levels equation as this purges any establishment specific timeinvariant effects that impact on TFP in levels.
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6
age and a measure of four-digit industry concentration (Herfindhal index).9 FDI is a
vector that captures foreign presence in the firms four-digit industry; as is common in
the literature (see Grg and Strobl, 2001) it is calculated as the proportion of
employment in the industry accounted for by foreign multinationals.10 D denotes full
sets of regional and time dummies and is a random error term. The use of regional
dummies helps mitigate concerns that, within a sector, the regional location of FDI
might be correlated with factors that also affect plants productivity.
If absorptive capacity matters for the pattern of FDI-induced TFP growth, the
spillovers regression functions will not be identical across all domestic firms. For this
reason the coefficient on the FDI vector in the above equations is explicitly made to
depend on absorptive capacity (ABC), which is defined as
)(max 11 = jtindustry
itit TFPTFPABC (2)
that is, establishment is TFP relative to the maximum TFP in the four digit sector
(the industry leader).11 A high level of absorptive capacity is supposed to indicate
technological congruity with industry leaders, which are predominantly foreign plants in
the data.
In order to allow for possible non-linearities we allow the parameter capturing the
degree of spillovers, , to be a quadratic function of the firm specific level of
absorptive capacity,
2210 ABCdABCdd ++= (3)
where the dare parameters to be estimated. Setting 02 =d gives the linear model,
which implies that the degree of spillovers either increases or decreases with absorptive
9 Nickell (1996) argues that competition can affect total factor productivity growth. We calculate aHerfindahl index based on plants market shares in terms of employment shares.
10 Note that we neglect a regional dimension to spillovers and instead assume that spillovers dissipatethrough the whole of the industry, regardless of location. Girma and Wakelin (2001) focus on regionalspillovers from FDI.
11 As discussed above, other measures of absorptive capacity have been employed in the literature, suchas R&D, export activity. Due to data availability we focus on the relative productivity measure. Thismeasure may also be most appropriate as it determines the relative efficiency of the plant. Note alsothat, since we define absorptive capacity as a relative concept, i.e., each establishments distance from
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7
capacity monotonically. The quadratic specification is more flexible in that it allows the
rate of FDI-induced productivity growth to vary with absorptive capacity. For example
with 01 >d and 02
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8
As one keeps increasing from 0 to 1, one can trace the entire conditional
distribution of plant level productivity, conditional on the set of regressors. Thus
quantile regressions allow us to focus attention on specific parts of the productivity
distribution, and help us answer questions like what are the FDI-induced externalities
to firms below the 10th percentile level of TFP? This is a practically important
question, since different responses to FDI may be expected from firms at different
points of the productivity distribution.
Furthermore, another advantage of quantile methods is that they provide a more
robust and efficient alternative to least squares estimators when the error term is non-
normal. This may be important here since establishment level TFP does not appear to
be (log)normally distributed. Figure 1 shows, for the years 1980 and 1992, Kernel
density estimates of log TFP and the corresponding normal density if the data were
normally distributed. There are departures from normality apparent, in particular for the
electronics sector. Table 1 shows some more detailed summary statistics and the p-
values for two tests of normality. In all cases we can reject the null hypothesis that log
TFP be normally distributed.
Since the data set contains a finite number of observations, only a finite number of
quantiles are distinct. In this study we consider regression estimates at five different
quantiles, namely, the 10th, 25th, 50th (median), 75th and 90th percentiles of the TFP
distribution. The use of an absorptive capacity proxy in the set of regressors implies
that, even within a particular conditional quantile, the response of plant level
productivity growth to FDI will vary according to initial level of productivity.
3.3 TFP estimation
For the estimation of equation (1) we need to have reliable estimates of plant level
TFP. Using log values, we write the production function as
),,,,( itititu
it
s
itit TFPmkllfy , wherey is output and there are four factors of production:
skilled labour (ls), unskilled labour (lu), materials or cost of goods sold (m) and capital
stock (k). For estimation purposes we employ a first-order Taylor approximation and
write the production function as:
ititmitkit
u
u
s
itsit TFPmklly +++++= 0 (6)
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9
Figure 1: Kernel density estimates of log TFP
Density
TFP 1980 - Engineeringtfp
Density
-15.5201 2.21873
0
.755985
Density
TFP 1980 - Electronicstfp
Density
-1.4337 1.3376
1.1e-09
1.79243
Density
TFP 1992 - Engineeringtfp
Density
-14.8265 3.11008
0
.792204
Density
TFP 1992 - Electronicstfp
Density
-2.81693 2.652
1.1e-22
1.40409
Note: dotted line is density, solid line is normal distribution
Table 1: Summary statistics for log TFP
allobservations
Engineering1980
Engineering1992
Electronics1980
Electronics1992
Mean 0.004 -0.005 0.011 0.005 0.016std.dev. 0.379 0.525 0.472 0.221 0.280Skewness -19.163 -20.056 0.222 0.372 -0.358Kurtosis 753.977 560.842 -16.350 4.966 16.236
10th
quantile -0.257 -0.265 -0.248 -0.240 -0.23625
thquantile -0.136 -0.145 -0.120 -0.125 -0.125
Median -0.010 -0.013 0.006 -0.013 0.001
75th quantile 0.133 0.134 0.159 0.124 0.13090
thquantile 0.303 0.304 0.324 0.271 0.296
observations 40432 2112 1821 857 1022test1 (p-value) -- 0.000 0.000 0.000 0.000test2 (p-value) 0.000 0.000 0.000 0.000 0.000
Notes: test1: test for normality (Shapiro and Francia, 1972)test2: skewness and kurtosis test for normality (DAgostino et al, 1990)
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10
TFP is assumed to follow the following AR(1) process:
itititit vfDTFPTFP +++= 1 (7)
whereD is a common year-specific shock,fis a time-invariant firm specific effect
and v a random error term. Note that we do not simply model productivity as a fixed
effect, as that would imply that TFP differences are fixed, and there is no role for
technology diffusion (convergence).
Recently the fundamental assumption of pooling individual times series data has
been questioned. Pesaran and Smith (1995) demonstrate that standard GMM estimators
of dynamic panel models lead to invalid inference if the response parameters are
characterised by heterogeneity. They argue that one is better off averaging parameters
from individual time series regressions. This is not feasible here since the individual
firms time series data is not of adequate length (75 percent of them have no more than
6 observations). However, we take some comfort from a recent comparative study by
Baltagi and Griffin (1997) which concludes that efficiency gains from pooling are likely
to more than offset the biases due to individual heterogeneity. Baltagi and Griffin
(1997) especially point out the desirable properties of the GLS-AR(1) estimator, and weuse this estimator to obtain estimates of the factor elasticities, and derive TFP as a
residual term. We estimate equation (7) for each of the 49 the four-digit SIC80
industries available in our sample, including subsidiaries of foreign firms to facilitate
the computation of the relative technology gaps described in equation (2).13
4 Data
We use establishment level panel data for UK manufacturing industries from theAnnual Respondents Database (ARD) provided by the Office for National Statistics for
the empirical analysis. The database is described in more detail in Appendix I. This
13 The estimations of equation (7) are not reported here to save space. Note that we have a large numberof observations even when estimating the equation for each of the 49 four digit sectors; the minimum
number of observations is no less than 170. Figure 1 and Table 1 provide some summary statistics forthe estimated TFP values.
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11
paper uses data for two broad industries, electronics and mechanical and instrument
engineering, spanning 49 four-digit SIC80 industries.14
Since there is evidence of substantial heterogeneity of productivity even within,
let alone across sectors, we decided to estimate the equations for different sectors rather
than pooling data for the whole manufacturing sector. Furthermore, focusing explicitly
on two narrowly defined sectors should mitigate concerns that the location of FDI in a
sector might be correlated with factors affecting plants productivity.
Our choice of sectors is motivated by the following considerations. First, FDI is
important in both sectors. As Griffith and Simpson (2004, Table 4) show, employment
in foreign-owned establishments accounted for almost 19 percent of total employment
in the electronics sector, and around 15 percent in the engineering sector in 1996.
Second, there appears to be evidence of contrasting motives for inward FDI in the two
sectors. According to Driffield and Love (2002), R&D activity in the UK engineering
industry is greater than R&D intensity in the corresponding sectors in the FDI source
countries. This suggests that FDI into this sector might be largely motivated by
technology sourcing considerations (see Fosfuri and Motta, 1999). Hence, at least in
theory, the scope for technology spillovers may be limited compared to potential
spillovers from FDI in the electronics sector, where multinational firms in the UK are
known to undertake a significant proportion of their innovative activity in the host
country.15
We excluded from our regression analysis domestic establishments with zero
output, negative capital stock and with no regional information. Table 2 gives the panel
structure of the resulting sample of establishments used in this study. A sizeable
proportion are only observed once. Our estimation cannot use these due to the need to
use lagged variables to construct TFP growth.
14 These are SIC80 industries 33 and 34 (electronics) and 32 and 37 (mechanical and instrumentengineering). We refer to the latter as engineering throughout the paper.
15 For example Cantwell and Iammarino (2000) indicate that in semiconductors the share of foreign-
owned firms in total patents was over 60 percent for the UK as a whole, and 75 percent for South EastEngland in particular.
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Table 2: Number of domestic plants by number of years observed
Electronics Engineering
Years # plants % # plants %
1 807 27.19 2078 30.32
2 514 17.32 1203 17.55
3 316 10.65 776 11.32
4 245 8.25 572 8.35
5 197 6.64 468 6.83
6 150 5.05 378 5.52
7 134 4.51 269 3.93
8 98 3.3 221 3.22
9 97 3.27 181 2.64
10 72 2.43 155 2.26
11 72 2.43 127 1.85
12 94 3.17 147 2.15
13 172 5.8 278 4.06
Total 2968 100 6853 100
5 Empirical results
Estimates of plant level TFP were calculated as described in equations (6) and (7).These were then used in the productivity spillovers estimations of equation (1), the
results of which are presented in Tables 3 and 4 for the electronics and engineering
sector respectively.16 The tables give results for estimations of the conditional mean as
well as for the 10th, 25th, 50th (median), 75th and 90th quantile of the TFP distribution.
Overall, our estimations produce statistically significant coefficients on all FDI
variables in both sectors and across quantiles, suggesting that the presence of FDI
matters for productivity growth. While the results in terms of the signs of thecoefficients seem to be similar across quantiles and between sectors, there is apparent
heterogeneity in the magnitude of the coefficients. For example, for the electronics
sector we find the lowest coefficients for the median and neighbouring quantiles, while
16 In Appendix II we also report results for regressions including the simple FDI variable without theABC interaction terms. From these regressions, we do not find robust evidence for spillovers. This
highlights the importance of allowing for different effects of FDI for establishments with differentlevels of absorptive capacity, as we have done in our paper.
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the magnitudes of coefficients are much more similar across quantiles for the
engineering sector.
Table 3: Effect of FDI on domestic establishments TFP Electronics sector(dependent variable: ln TFP)
(1) (2) (3) (4) (5) (6)
Mean 10th
quantile25
th
quantilemedian 75
th
quantile90
th
quantile
Age -0.000 0.004 0.002 0.000 -0.002 -0.004(0.001) (0.001)*** (0.000)*** (0.000) (0.000)*** (0.001)***
Herfindahl index -0.018 -0.190 -0.153 0.010 0.044 0.219(0.075) (0.095)** (0.048)*** (0.037) (0.043) (0.085)***
FDI 1.511 1.205 0.819 0.487 0.632 1.065(0.345)*** (0.457)*** (0.214)*** (0.172)*** (0.224)*** (0.602)*
FDI * ABC-5.433 -4.183 -2.761 -1.845 -2.201 -3.083
(1.261)*** (1.878)** (0.842)*** (0.628)*** (0.784)*** (2.081)
FDI * ABC2 4.659 3.656 2.262 1.729 1.903 2.031(1.096)*** (1.822)** (0.787)*** (0.546)*** (0.654)*** (1.720)
Constant -0.003 -0.280 -0.140 -0.030 0.087 0.197(0.021) (0.027)*** (0.014)*** (0.011)*** (0.013)*** (0.025)***
Observations 9555 9555 9555 9555 9555 9555
Notes: Standard errors in parentheses * significant at 10%; ** significant at 5%; *** significant at 1%regressions include time and regional dummies
Table 4: Effect of FDI on domestic establishments TFP Engineering sector(dependent variable: ln TFP)
(1) (2) (3) (4) (5) (6)mean 10th
quantile25th
quantilemedian 75th
quantile90th
quantileage 0.001 0.003 0.001 0.000 -0.001 -0.003
(0.001)* (0.001)*** (0.000)*** (0.000) (0.000)*** (0.001)***Herfindahl index 0.005 -0.050 -0.029 0.013 0.026 0.072
(0.076) (0.067) (0.034) (0.025) (0.034) (0.059)FDI 3.808 0.831 0.923 0.938 0.963 1.603
(0.336)*** (0.381)** (0.158)*** (0.111)*** (0.177)*** (0.415)***FDI * ABC -14.423 -3.120 -3.671 -3.473 -3.616 -5.881
(1.345)*** (1.614)* (0.656)*** (0.442)*** (0.681)*** (1.563)***FDI * ABC2 12.127 2.464 3.204 2.836 3.138 5.002
(1.249)*** (1.599) (0.635)*** (0.410)*** (0.608)*** (1.353)***Constant -0.039 -0.256 -0.123 -0.001 0.115 0.259
(0.026) (0.024)*** (0.012)*** (0.009) (0.012)*** (0.022)***Observations 18474 18474 18474 18474 18474 18474
Notes: Standard errors in parentheses * significant at 10%; ** significant at 5%; *** significant at 1%regressions include time and regional dummies
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Marginal effects of changes in FDI
It is, of course, difficult to assess the size of the actual effect of FDI on
productivity for establishments in the different quantiles of the TFP growth distribution,
not least due to the inclusion of the interaction terms. Establishments that fall within
the different quantiles of the TFP growth distribution may also be expected to have
different levels of absorptive capacity.
To calculate the effect of FDI at the different quantiles for a given level of
absorptive capacity we proceed as follows. First, we calculate the qth quantile (q = 10,
25, 50, 75, 90) of the TFP growth distribution and construct a 90 percent confidence
interval around that value. Second, we calculate the median absorptive capacity level
for establishments within the 90percent confidence interval of the qth quantile. The
results are shown in Table 5. It is noteworthy that the median absorptive capacity level
is higher for the electronics sector for all quantiles, although electronics only has higher
TFP growth in the lower quantiles of the distribution up to the median. This suggests
that, in this sector, there is less of a productivity differential between foreign and
domestic establishments.
Table 5: Mean ABC for firms within the 90 percent confidence interval of qth
quantile ofTFP
TFP 90% confidence interval forTFP median ABCElectronics
Mean -0.002 -0.007 0.003 0.453
10th
quantile -0.194 -0.202 -0.188 0.522
25th
quantile -0.086 -0.089 -0.083 0.496
median -0.001 -0.004 0.001 0.452
75th
quantile 0.083 0.080 0.087 0.430
90
th
quantile 0.190 0.183 0.197 0.393
Engineer ing
Mean -0.009 -0.014 -0.003 0.403
10th
quantile -0.221 -0.226 -0.217 0.442
25th
quantile -0.1001 -0.103 -0.098 0.406
median -0.003 -0.005 -0.001 0.415
75th
quantile 0.091 0.088 0.093 0.391
90th
quantile 0.210 0.204 0.215 0.361
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We use the median values for absorptive capacity shown in Table 5 to calculate
the marginal effect of an increase in the growth of FDI. The marginal effects, which are
presented in Table 6, are evaluated at the median absorptive capacity level for the
various quantiles. For example, the figures in the table show that, for an establishment
in the electronics sector in the 10th percentile of the TFP distribution, a 1 percentage
point increase in the growth of FDI in the region will lead to a 0.018 percentage point
increase in the growth of TFP. This effect is much larger for establishments in the 90th
percentile of the TFP growth distribution, where a 1 unit increase in the growth of FDI
is estimated to lead to a 0.167 percentage point increase in the growth of TFP.
Table 6: Marginal effect of increase in FDI, evaluated at median ABC
Electronics Engineering
mean 0.006 -0.035
10th
quantile 0.018 -0.067
25th
quantile 0.006 -0.039
median 0.006 -0.015
75th
quantile 0.037 0.029
90th
quantile 0.167 0.132
Note: table gives the effect of a one unit increase in FDI on TFP growth, evaluated for the median level ofabsorptive capacity
The table shows significant differences in the size of the marginal effects across
quantiles and sectors. The largest marginal effects are apparent for the 90th quantile
both for the electronics and engineering sector. Interestingly, establishments in the 10th
quantile in the electronics sector benefit more (in terms of the absolute size of the
marginal effect) than those in the 25th or median quantile. This suggests that domestic
establishments in either the higher or lower end of the TFP distribution are set to benefit
more from FDI spillovers than firms in the middle range of the distribution.
Another important point to note is that the marginal effects for establishments in
the lower quantiles of the TFP distribution in the engineering sector are actually
negative. In other words, these establishments experience reductions in their
productivity growth following increases in FDI in their four digit sector. We are not the
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first paper to find negative productivity spillovers and the commonly used explanation
is that these domestic firms increase average costs due to product market competition
with foreign multinationals, hence reducing productivity (Aitken and Harrison, 1999).
Our result suggests that this happens only for a sub-group of firms in the two digit
engineering industry, namely those establishments in the lower quantiles of the TFP
distribution. This result is, thus, broadly in line with our expectation that spillovers in
the engineering sector may be limited due to technology sourcing FDI, as suggested
by Driffield and Love (2002).
Marginal effects of changes in ABC
While the effect of changes in FDI for a given level of absorptive capacity is
informative in its own right we are also interested in the impact of changes of absorptive
capacity on establishments ability to benefit from spillovers. This is an important
issue, as policy is likely to be more easily targeted at improving absorptive capacity
rather than at fine tuning the level or growth of inward investment.
In order to tackle this issue we, firstly, turn back to the regression results in Tables
3 and 4 to determine the shape of the relationship between absorptive capacity and TFP
growth. From the coefficients on the interaction terms we see that, for both sectors andall quantiles, there is a convex (u-shape) relationship for the interaction of absorptive
capacity with FDI. Hence, for a given level of FDI growth, increases in absorptive
capacity will first reduce but eventually increase productivity growth.
In order to rationalise this result we should take into account that the relationship
may reflect the counteracting effects of positive spillovers and negative competition
effects, as discussed by Aitken and Harrison (1999). Domestic firms with low
absorptive capacity levels are not able to benefit from positive spillovers but are alsounlikely to be in direct competition with multinationals due to their relative
backwardness. As firms improve their absorptive capacity by becoming more
productive they start competing with multinationals (thus beginning to be exposed to
the negative competition effect and potentially experiencing reductions in productivity)
but are not yet able to benefit from spillovers. Only as they improve their absorptive
capacity beyond the critical value are they able to benefit from positive spillovers,
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which then outweigh the negative competition effect as they become more able to
compete with the multinationals.
To be more precise about the shapes of the functions we can calculate the critical
values (turning points) at which the effect ofABCon productivity spillovers switches
from negative to positive. These calculations for the two sectors and the various
quantiles are given in Table 7. The first point to note is that the critical values are all
around 0.5 0.6 for all quantiles in both sectors. For example, we find for the
electronics sector that establishments having productivity levels around the 25th quantile
start to benefit from increasing growth of FDI once they achieve an absorptive capacity
level of over 0.61. Below this threshold they will experience a negative productivity
growth effect. From Table 5 we know that the median absorptive capacity level of
establishments in the 25th quantile is 0.49, which is well below the critical value. As a
matter of fact, our summary statistics (which are not reported in this paper) show that
over 70 percent of establishments in the 25th quantile of the TFP distribution have
absorptive capacity levels below the critical value.
Comparisons of Table 7 and Table 5 show that, indeed, for all cases the median
value of the productivity gap is below the critical value. This implies that more than 50
percent of establishments with productivity levels in these quantiles are negatively
affected by a growth in the change of FDI.
Table 7: Calculation of critical values for ABC
Electronics Engineering
mean 0.583 0.595
10th
quantile 0.572 0.633
25th
quantile 0.610 0.573
median 0.534 0.61275th
quantile 0.578 0.576
90th
quantile 0.759 0.588
Using the regression results in Tables 3 and 4 we can calculate the marginal
effects of changes in absorptive capacity for a constant level of growth of FDI. Such a
calculation enables us to say something about the effect on productivity growth of
improving absorptive capacity levels in the host country. The results of these
calculations are charted in Figures 2a and 2b. Figure 2a shows the marginal effect of
changes in absorptive capacity on productivity growth for a given level of FDI growth
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for the electronics sector.17 These marginal effects are equal to zero at the critical
values shown in Table 7. We find that establishments in the 10th quantile appear to
benefit most from increasing absorptive capacity beyond the turning point. These
results are different for the engineering sector (Figure 2.b), where establishments in the
90th percentile of the TFP distribution appear to benefit most from increasing absorptive
capacity. Overall, however, it is clear that all establishments can increase their potential
for positive spillover effects on productivity growth by increasing their absorptive
capacity beyond the turning point.
6 Conclusions
This paper focuses on the role of absorptive capacity in determining whether or
not domestic establishments benefit from productivity spillovers from FDI. We analyse
this issue using establishment level data for the electronics and engineering sectors in
the UK. Absorptive capacity is measured as the difference in TFP between an
establishment and the maximum TFP in the industry. We allow for different effects of
FDI on establishments located at different quantiles of the productivity distribution by
using conditional quantile regression.
Overall, while there is some heterogeneity in results across sectors and quantiles,
our findings clearly suggest that absorptive capacity matters for productivity spillover
benefits. We find that there is a u-shaped relationship between productivity growth and
FDI interacted with absorptive capacity. This indicates that improvements in absorptive
capacity at the level of the establishment may enhance its ability to benefit from
spillovers from FDI.
17
In all graphs we assume this FDI growth to be 0.1, a figure that is well within the range of actualvalues for FDI growth in the data
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Figure 2: Calculation of marginal effects of change in absorptive capacity
Panel A: Electronics
Electronics
-0.6
-0.4
-0.2
0
0.2
0.4
0.6
0 0.05 0.1 0.15 0.2 0.25 0.3 0.35 0.4 0.45 0.5 0.55 0.6 0.65 0.7 0.75 0.8 0.85 0.9 0.95 1
Absorptive capacity
Marginaleffect
mean 10th quantile 25th quantile median 75th quantile 90th quantile
Panel B: Engineering
Engineering
-2
-1.5
-1
-0.5
0
0.5
1
1.5
0 0.05 0.1 0.15 0.2 0.25 0.3 0.35 0.4 0.45 0.5 0.55 0.6 0.65 0.7 0.75 0.8 0.85 0.9 0.95 1
Absorptive capacity
Marginaleffect
mean 10th quantile 25th quantile median 75th quantile 90th quantile
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Appendix I: Description of the data
The ARD consists of individual establishments' records that underlies the Annual
Census of Production. As Barnes and Martin (2002) provide a very useful introduction
to the data set, we only include a brief discussion of some of the features of the data that
are relevant to the present work. For each year the ARD consists of two files. What is
known as the selected file, contains detailed information on a sample of
establishments that are sent inquiry forms. The second file comprises the non-selected
(non-sampled) establishments and only basic information such as employment, location,
industry grouping and foreign ownership status is recorded. Some 14,000-19,000
establishments are selected each year, based on a stratified sampling scheme. Thescheme tends to vary from year to year, but for the period under consideration
establishments with more than 100 employees were always sampled.
In the ARD, an establishment is defined as the smallest unit that is deemed
capable of providing information on the Census questionnaire. Thus a parent
establishment reports for more than one plant (or local unit in the parlance of ARD).
For selected multi-plant establishments, we only have aggregate values for the
constituent plants. Indicative information on the children is available in the non-
selected file.
Like the majority of researchers using the ARD (e.g., Haskel et al., 2002) we use
data on multi-plant establishments as they are. In our sample period (1980-92), about
95 percent of the establishments in these industries are single-plant firms. In the actual
sample we used for the econometric estimation this figure is around 80 percent. Hence,
most of the data used is actually plant level data and we, therefore tend to use the terms
plant and establishment interchangeably.
There are, however, two important ways in which we have made use of the local
unit information in the non-selected file. The first is in the construction of measures of
regional FDI. Foreign presence in a region and sector is defined as the proportion of
employment accounted for by foreign multinationals. Simply relying on establishment
data could be misleading, as they could report for plants across different regions or
sectors. However, by extracting the employment, ownership and industrial affiliation
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data of the children in the non-selected file, it was possible to calculate correctly the
regional FDI variables. The second way information in the non-selected file was used is
in the identification of single location (region) and multiple location establishments.
Appendix II: Regression results without absorptive capacity
(dependent variable: ln TFP)
Panel A: Electronics sector
(1) (2) (3) (4) (5) (6)mean 10th
quantile25th
quantilemedian 75th
quantile90th
quantileAge -0.000 0.003 0.002 0.000 -0.002 -0.004
(0.001) (0.001)*** (0.000)*** (0.000) (0.000)*** (0.001)***Herfindahl index -0.050 -0.174 -0.183 -0.021 0.033 0.165
(0.073) (0.099)* (0.050)*** (0.036) (0.047) (0.091)*FDI 0.049 0.016 0.038 0.013 0.030 0.048
(0.045) (0.066) (0.031) (0.022) (0.031) (0.065)Constant 0.002 -0.216 -0.091 -0.010 0.100 0.245
(0.021) (0.028)*** (0.014)*** (0.011) (0.014)*** (0.027)***Observations 10173 10173 10173 10173 10173 10173
Panel B: Engineering sector
mean 10thquantile
25thquantile
median 75thquantile
90thquantile
Age 0.001 0.002 0.001 0.000 -0.001 -0.003(0.001) (0.001)*** (0.000)*** (0.000) (0.000)*** (0.001)***
Herfindahl index 0.037 -0.005 -0.016 0.019 0.029 0.054(0.070) (0.064) (0.031) (0.024) (0.034) (0.057)
FDI 0.144 -0.023 -0.011 0.024 0.039 0.149(0.062)** (0.062) (0.030) (0.021) (0.031) (0.061)**
Constant -0.023 -0.290 -0.132 -0.002 0.115 0.258
(0.024) (0.022)*** (0.012)*** (0.009) (0.012)*** (0.021)***Observations 20438 20438 20438 20438 20438 20438
Notes: Standard errors in parentheses * significant at 10%; ** significant at 5%; *** significant at 1%regressions include time and regional dummies
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24
The following Discussion Papers have been published since 2004:
Series 1: Economic Studies
1 2004 Foreign Bank Entry into Emerging Economies:
An Empirical Assessment of the Determinants
and Risks Predicated on German FDI Data Torsten Wezel
2 2004 Does Co-Financing by Multilateral Development
Banks Increase Risky Direct Investment in
Emerging Markets?
Evidence for German Banking FDI Torsten Wezel
3 2004 Policy Instrument Choice and Non-Coordinated Giovanni Lombardo
Monetary Policy in Interdependent Economies Alan Sutherland
4 2004 Inflation Targeting Rules and Welfare
in an Asymmetric Currency Area Giovanni Lombardo
5 2004 FDI versus cross-border financial services: Claudia M. Buch
The globalisation of German banks Alexander Lipponer
6 2004 Clustering or competition? The foreign Claudia M. Buch
investment behaviour of German banks Alexander Lipponer
7 2004 PPP: a Disaggregated View Christoph Fischer
8 2004 A rental-equivalence index for owner-occupied Claudia Kurz
housing in West Germany 1985 to 1998 Johannes Hoffmann
9 2004 The Inventory Cycle of the German Economy Thomas A. Knetsch
10 2004 Evaluating the German Inventory Cycle
Using Data from the Ifo Business Survey Thomas A. Knetsch
11 2004 Real-time data and business cycle analysis
in Germany Jrg Dpke
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25
12 2004 Business Cycle Transmission from the US
to Germany a Structural Factor Approach Sandra Eickmeier
13 2004 Consumption Smoothing Across States and Time: George M.
International Insurance vs. Foreign Loans von Furstenberg
14 2004 Real-Time Estimation of the Output Gap
in Japan and its Usefulness for
Inflation Forecasting and Policymaking Koichiro Kamada
15 2004 Welfare Implications of the Design of a
Currency Union in Case of Member Countriesof Different Sizes and Output Persistence Rainer Frey
16 2004 On the decision to go public: Ekkehart Boehmer
Evidence from privately-held firms Alexander Ljungqvist
17 2004 Who do you trust while bubbles grow and blow?
A comparative analysis of the explanatory power
of accounting and patent information for the Fred Ramb
market values of German firms Markus Reitzig
18 2004 The Economic Impact of Venture Capital Astrid Romain, Bruno
van Pottelsberghe
19 2004 The Determinants of Venture Capital: Astrid Romain, Bruno
Additional Evidence van Pottelsberghe
20 2004 Financial constraints for investors and the
speed of adaption: Are innovators special? Ulf von Kalckreuth
21 2004 How effective are automatic stabilisers?
Theory and results for Germany and other Michael Scharnagl
OECD countries Karl-Heinz Tdter
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22 2004 Asset Prices in Taylor Rules: Specification, Pierre L. Siklos
Estimation, and Policy Implications for the Thomas Werner
ECB Martin T. Bohl
23 2004 Financial Liberalization and Business
Cycles: The Experience of Countries in Lcio Vinhas
the Baltics and Central Eastern Europe de Souza
24 2004 Towards a Joint Characterization of
Monetary Policy and the Dynamics of
the Term Structure of Interest Rates Ralf Fendel
25 2004 How the Bundesbank really conducted Christina Gerberding
monetary policy: An analysis based on Andreas Worms
real-time data Franz Seitz
26 2004 Real-time Data for Norway: T. Bernhardsen, . Eitrheim,
Challenges for Monetary Policy A.S. Jore, . Risland
27 2004 Do Consumer Confidence Indexes Help
Forecast Consumer Spending in Real Time? Dean Croushore
28 2004 The use of real time information in Maritta Paloviita
Phillips curve relationships for the euro area David Mayes
29 2004 The reliability of Canadian output Jean-Philippe Cayen
gap estimates Simon van Norden
30 2004 Forecast quality and simple instrument rules - Heinz Glck
a real-time data approach Stefan P. Schleicher
31 2004 Measurement errors in GDP and Peter Kugler
forward-looking monetary policy: Thomas J. Jordan
The Swiss case Carlos Lenz
Marcel R. Savioz
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32 2004 Estimating Equilibrium Real Interest Rates Todd E. Clark
in Real Time Sharon Kozicki
33 2004 Interest rate reaction functions for the euro area
Evidence from panel data analysis Karsten Ruth
34 2004 The Contribution of Rapid Financial
Development to Asymmetric Growth of
Manufacturing Industries: George M.
Common Claims vs. Evidence for Poland von Furstenberg
35 2004 Fiscal rules and monetary policy in a dynamic
stochastic general equilibrium model Jana Kremer
36 2004 Inflation and core money growth in the Manfred J.M. Neumann
euro area Claus Greiber
37 2004 Taylor rules for the euro area: the issue Dieter Gerdesmeier
of real-time data Barbara Roffia
38 2004 What do deficits tell us about debt?
Empirical evidence on creative accounting Jrgen von Hagen
with fiscal rules in the EU Guntram B. Wolff
39 2004 Optimal lender of last resort policy Falko Fecht
in different financial systems Marcel Tyrell
40 2004 Expected budget deficits and interest rate swap Kirsten Heppke-Falk
spreads - Evidence for France, Germany and Italy Felix Hfner
41 2004 Testing for business cycle asymmetries
based on autoregressions with a
Markov-switching intercept Malte Knppel
1 2005 Financial constraints and capacity adjustment
in the United Kingdom Evidence from a Ulf von Kalckreuth
large panel of survey data Emma Murphy
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2 2005 Common stationary and non-stationary
factors in the euro area analyzed in a
large-scale factor model Sandra Eickmeier
3 2005 Financial intermediaries, markets, F. Fecht, K. Huang,
and growth A. Martin
4 2005 The New Keynesian Phillips Curve
in Europe: does it fit or does it fail? Peter Tillmann
5 2005 Taxes and the financial structure Fred Ramb
of German inward FDI A. J. Weichenrieder
6 2005 International diversification at home Fang Cai
and abroad Francis E. Warnock
7 2005 Multinational enterprises, international trade,
and productivity growth: Firm-level evidence Wolfgang Keller
from the United States Steven R. Yeaple
8 2005 Location choice and employment S. O. Becker,
decisions: a comparison of German K. Ekholm, R. Jckle,
and Swedish multinationals M.-A. Muendler
9 2005 Business cycles and FDI: Claudia M. Buch
evidence from German sectoral data Alexander Lipponer
10 2005 Multinational firms, exclusivity, Ping Lin
and the degree of backward linkages Kamal Saggi
11 2005 Firm-level evidence on international Robin Brooks
stock market comovement Marco Del Negro
12 2005 The determinants of intra-firm trade: in search Peter Egger
for export-import magnification effects Michael Pfaffermayr
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13 2005 Foreign direct investment, spillovers and
absorptive capacity: evidence from quantile Sourafel Girma
regressions Holger Grg
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Series 2: Banking and Financial Studies
1 2004 Forecasting Credit Portfolio Risk A. Hamerle,
T. Liebig, H. Scheule
2 2004 Systematic Risk in Recovery Rates
An Empirical Analysis of US Corporate Klaus Dllmann
Credit Exposures Monika Trapp
3 2004 Does capital regulation matter for bank Frank Heid
behaviour? Evidence for German savings Daniel Porath
banks Stphanie Stolz
4 2004 German bank lending during F. Heid, T. Nestmann,
emerging market crises: B. Weder di Mauro,
A bank level analysis N. von Westernhagen
5 2004 How will Basel II affect bank lending to T. Liebig, D. Porath,
emerging markets? An analysis based on B. Weder di Mauro,
German bank level data M. Wedow
6 2004 Estimating probabilities of default for
German savings banks and credit cooperatives Daniel Porath
1 2005 Measurement matters Input price proxies
and bank efficiency in Germany Michael Koetter
2 2005 The supervisors portfolio: the market price
risk of German banks from 2001 to 2003 Christoph Memmel
Analysis and models for risk aggregation Carsten Wehn
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Visiting researcher at the Deutsche Bundesbank
The Deutsche Bundesbank in Frankfurt is looking for a visiting researcher. Visitors should
prepare a research project during their stay at the Bundesbank. Candidates must hold a
Ph D and be engaged in the field of either macroeconomics and monetary economics,
financial markets or international economics. Proposed research projects should be from
these fields. The visiting term will be from 3 to 6 months. Salary is commensurate with
experience.
Applicants are requested to send a CV, copies of recent papers, letters of reference and a
proposal for a research project to:
Deutsche Bundesbank
Personalabteilung
Wilhelm-Epstein-Str. 14
D - 60431 Frankfurt
GERMANY
31
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